3 research outputs found

    Straightening Curved Traffic Lanes in Video

    Get PDF
    Video based vehicle sensing from uncalibrated cameras providesuseful traffic information to modern Intelligent Transportation Systems(ITS). This requires vehicle tracking and Turning MovementCounts (TMCs). Traffic scenes contain vehicle motion constrainedalong possibly curved traffic lanes which can be normalized intostraight lines. A simple interpolation scheme is presented whichprojects to image sequences where vehicles always appear to movestraight horizontally for simplified vehicle tracking

    Lane Discovery in Traffic Video

    Get PDF
    Video sensing has become very important in Intelligent Transportation Systems (ITS) due to its relative low cost and non-invasive deployment. An effective ITS requires detailed traffic information, including vehicle volume counts for each lane in surveillance video of a highway or an intersection. The multiple-target, vehicle-tracking and counting problem is most reliably solved in a reduced space defined by the constraints of the vehicles driving within lanes. This requires lanes to be pre-specified. An off-line pre-processing method is presented which automatically discovers traffic lanes from vehicle motion in uncalibrated video from a stationary camera. A moving vehicle density map is constructed, then multiple lane curves are fitted. Traffic lanes are found without relying on possibly noisy tracked vehicle trajectories

    A comprehensive review of vehicle detection using computer vision

    Get PDF
    A crucial step in designing intelligent transport systems (ITS) is vehicle detection. The challenges of vehicle detection in urban roads arise because of camera position, background variations, occlusion, multiple foreground objects as well as vehicle pose. The current study provides a synopsis of state-of-the-art vehicle detection techniques, which are categorized according to motion and appearance-based techniques starting with frame differencing and background subtraction until feature extraction, a more complicated model in comparison. The advantages and disadvantages among the techniques are also highlighted with a conclusion as to the most accurate one for vehicle detection
    corecore